GANESH: Generalizable NeRF for Lensless Imaging
IEEE/CVF Winter Conference on Applications of Computer Vision (WACV) 2025 Lensless imaging offers a significant opportunity to develop ultra-compact cameras by removing the conventional bulky lens system. However, without a focusing element, the sensor's output is no longer a direct image but a...
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Zusammenfassung: | IEEE/CVF Winter Conference on Applications of Computer Vision
(WACV) 2025 Lensless imaging offers a significant opportunity to develop ultra-compact
cameras by removing the conventional bulky lens system. However, without a
focusing element, the sensor's output is no longer a direct image but a complex
multiplexed scene representation. Traditional methods have attempted to address
this challenge by employing learnable inversions and refinement models, but
these methods are primarily designed for 2D reconstruction and do not
generalize well to 3D reconstruction. We introduce GANESH, a novel framework
designed to enable simultaneous refinement and novel view synthesis from
multi-view lensless images. Unlike existing methods that require scene-specific
training, our approach supports on-the-fly inference without retraining on each
scene. Moreover, our framework allows us to tune our model to specific scenes,
enhancing the rendering and refinement quality. To facilitate research in this
area, we also present the first multi-view lensless dataset, LenslessScenes.
Extensive experiments demonstrate that our method outperforms current
approaches in reconstruction accuracy and refinement quality. Code and video
results are available at https://rakesh-123-cryp.github.io/Rakesh.github.io/ |
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DOI: | 10.48550/arxiv.2411.04810 |